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dc.creatorBosela, Michal
dc.creatorRubio-Cuadrado, Álvaro
dc.creatorMarcis, Peter
dc.creatorMerganičová, Katarina
dc.creatorFleischer Jr, Peter
dc.creatorForrester, David I.
dc.creatorUhl, Enno
dc.creatorAvdagić, Admir
dc.creatorBellan, Michal
dc.creatorBielak, Kamil
dc.creatorBravo, Felipe
dc.creatorColl, Lluís
dc.creatorCseke, Klára
dc.creatordel Rio, Miren
dc.creatorDinca, Lucian
dc.creatorDobor, Laura
dc.creatorDrozdowski, Stanisław
dc.creatorGiammarchi, Francesco
dc.creatorGömöryová, Erika
dc.creatorIbrahimspahić, Aida
dc.creatorKašanin-Grubin, Milica
dc.creatorKlopčič, Matija
dc.creatorKurylyak, Viktor
dc.creatorMontes, Fernando
dc.creatorPach, Maciej
dc.creatorRuiz-Peinado, Ricardo
dc.creatorSkrzyszewski, Jerzy
dc.creatorStajic, Branko
dc.creatorStojanovic, Dejan
dc.creatorSvoboda, Miroslav
dc.creatorTonon, Giustino
dc.creatorVersace, Soraya
dc.creatorMitrovic, Suzana
dc.creatorZlatanov, Tzvetan
dc.creatorPretzsch, Hans
dc.creatorTognetti, Roberto
dc.date.accessioned2023-06-26T13:42:23Z
dc.date.available2023-06-26T13:42:23Z
dc.date.issued2023
dc.identifier.issn0048-9697
dc.identifier.urihttps://cer.ihtm.bg.ac.rs/handle/123456789/6267
dc.description.abstractProcess-based models and empirical modelling techniques are frequently used to (i) explore the sensitivity of tree growth to environmental variables, and (ii) predict the future growth of trees and forest stands under climate change scenarios. However, modelling approaches substantially influence predictions of the sensitivity of trees to environmental factors. Here, we used tree-ring width (TRW) data from 1630 beech trees from a network of 70 plots established across European mountains to build empirical predictive growth models using various modelling approaches. In addition, we used 3-PG and Biome-BGCMuSo process-based models to compare growth predictions with derived empirical models. Results revealed similar prediction errors (RMSE) across models ranging between 3.71 and 7.54 cm2 of basal area increment (BAI). The models explained most of the variability in BAI ranging from 54 % to 87 %. Selected explanatory variables (despite being statistically highly significant) and the pattern of the growth sensitivity differed between models substantially. We identified only five factors with the same effect and the same sensitivity pattern in all empirical models: tree DBH, competition index, elevation, Gini index of DBH, and soil silt content. However, the sensitivity to most of the climate variables was low and inconsistent among the empirical models. Both empirical and process based models suggest that beech in European mountains will, on average, likely experience better growth conditions under both 4.5 and 8.5 RCP scenarios. The process-based models indicated that beech may grow better across European mountains by 1.05 to 1.4 times in warmer conditions. The empirical models identified several drivers of tree growth that are not included in the current process-based models (e.g., different nutrients) but may have a substantial effect on final results, particularly if they are limiting factors. Hence, future development of process-based models may build upon our findings to increase their ability to correctly capture ecosystem dynamics.sr
dc.language.isoensr
dc.publisherElseviersr
dc.relationinfo:eu-repo/grantAgreement/MESTD/inst-2020/200026/RS//sr
dc.relationinfo:eu-repo/grantAgreement/MESTD/inst-2020/200197/RS//sr
dc.relationCOST Action CA15226 CLIMO “Climate-Smart Forestry in Mountain Regions”sr
dc.relationSlovak Research and Development Agency ( projects APVV-15-0265, APVV-18-0390, APVV-18-0086 and APVV-19-0183)sr
dc.relationSlovenian Research Agency (ARRS) (the research core funding P4-0059 “Forest, forestry and renewable forest resources")”sr
dc.relationMinistry of Civil Affairs of Bosnia and Herzegovinasr
dc.relationCastilla and León regional government (Spain) excellence projects (CLU-2019-01 y CL-EI-2021-05)sr
dc.relationEuropean Regional Development Fund (ERDF) - VA183P20sr
dc.relationOP RDE via grant no. CZ.02.1.01/0.0/0.0/16_019/0000803 “Advanced research supporting the forestry and wood-processing sector's adaptation to global change and the 4th industrial revolution”.sr
dc.relationIntegrated Infrastructure Operational Programme funded by the ERDF - Scientific support of climate change adaptation in agriculture and mitigation of soil degradation” (grant no. ITMS2014+ 313011W580)sr
dc.relationNational Roadmap for Research Infrastructure (2020–2027), Ministry of Education and Science of the Republic of Bulgaria (agreements nos. DO1-405/18.12.2020 and DO1-163/28.07.2022 (LTER-BG))sr
dc.rightsrestrictedAccesssr
dc.sourceScience of the Total Environmentsr
dc.subjectDendrochronologysr
dc.subjectEcosystem dynamicssr
dc.subjectEuropean beechsr
dc.subjectGlobal climate changesr
dc.subjectProcess-based growth modelsr
dc.subjectTree growthsr
dc.titleЕmpirical and process-based models predict enhanced beech growth in European mountains under climate change scenarios: a multimodel approachsr
dc.typearticlesr
dc.rights.licenseARRsr
dc.citation.volume888
dc.citation.spage164123
dc.citation.rankaM21~
dc.identifier.pmid37182772
dc.identifier.doi10.1016/j.scitotenv.2023.164123
dc.type.versionpublishedVersionsr


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